## Find a copy online

### Links to this item

## Find a copy in the library

Finding libraries that hold this item...

## Details

Genre/Form: | Electronic books |
---|---|

Additional Physical Format: | Print version: Assessing the reliability of complex models. Washington : National Academies Press, 2012 (OCoLC)784035096 |

Material Type: | Document, Internet resource |

Document Type: | Internet Resource, Computer File |

All Authors / Contributors: | National Research Council (U.S.). Committee on Mathematical Foundations of Verification, Validation, and Uncertainty Quantification.; National Research Council (U.S.). Board on Mathematical Sciences and Their Applications.; National Research Council (U.S.). Division on Engineering and Physical Sciences. |

ISBN: | 9780309256353 0309256356 1283636220 9781283636223 6613948683 9786613948687 |

OCLC Number: | 798361535 |

Description: | 1 online resource (xi, 131 pages) : illustrations (some color) |

Contents: | Introduction -- Sources of uncertainty and error -- Verification -- Emulation, reduced-order modeling, and forward propagation -- Model validation and prediction -- Making decisions -- Next steps in practice, research, and education for verification, validation, and uncertainty quantification -- Appendixes. |

Responsibility: | Committee on Mathematical Foundations of Verification, Validation, and Uncertainty Quantification ; Board on Mathematical Sciences and Their Applications ; Division on Engineering and Physical Sciences. |

More information: |

### Abstract:

"Advances in computing hardware and algorithms have dramatically improved the ability to simulate complex processes computationally. Today's simulation capabilities offer the prospect of addressing questions that in the past could be addressed only by resource-intensive experimentation, if at all. Assessing the Reliability of Complex Models recognizes the ubiquity of uncertainty in computational estimates of reality and the necessity for its quantification. As computational science and engineering have matured, the process of quantifying or bounding uncertainties in a computational estimate of a physical quality of interest has evolved into a small set of interdependent tasks: verification, validation, and uncertainty of quantification (VVUQ). In recognition of the increasing importance of computational simulation and the increasing need to assess uncertainties in computational results, the National Research Council was asked to study the mathematical foundations of VVUQ and to recommend steps that will ultimately lead to improved processes. [This report] discusses changes in education of professionals and dissemination of information that should enhance the ability of future VVUQ practitioners to improve and properly apply VVUQ methodologies to difficult problems, enhance the ability of VVUQ customers to understand VVUQ results and use them to make informed decisions, and enhance the ability of all VVUQ stakeholders to communicate with each other. This report is an essential resource for all decision and policy makers in the field, students, stakeholders, UQ experts, and VVUQ educators and practitioners"--Publisher's description.

## Reviews

*User-contributed reviews*

Add a review and share your thoughts with other readers.
Be the first.

Add a review and share your thoughts with other readers.
Be the first.

## Tags

Add tags for "Assessing the reliability of complex models : mathematical and statistical foundations of verification, validation, and uncertainty quantification".
Be the first.